Work Packages
Work Package 1: Representation
Objectives:
Development of representations of everyday activities in general as well as specializations for observations of humans performing tasks and logged robot task executions
Development of formal representation of knowledge and data needed for robotic cooking and kitchen tool manipulation skills
Methods for storing these formal robot skill representations, for reasoning upon them, for combining, learning, and constraining them, and for transforming them into executable robot programs
Leading partner institution: Uni Bremen
Work Package 2: Observation of Human Demonstrations
Objectives:
Leading partner institution: FORTH
Work Package 3: Constraint- and Optimization-based Control
Objectives:
Development of an action and movement interpretation system that generates fast, smooth and dynamically adequate movements for constraint- and optimization-based action specifications
Mapping of “low level”, generic infrastructure into a formal, more application-directed representations (so called domain-specific languages) that can be reasoned with, that afford transformation into plans, and that can be used integration
Develop schedulers that execute the right pieces of code, at the right moment, and at the right level of abstraction
Leading partner institution: KU Leuven
Work Package 4: Perception for Robot Action and Manipulation
Objectives:
Extract the information about the objects in the environment (geometric, appearance, kinematics and dynamic properties) using different sensors (vision, force, distance, tactile)
Provide input to control loops for the execution of tasks based on multi-sensory feedback according to therobotic platform capabilities (single, dual-arm, whole-body) for known objects
Provide input for learning of task constraints and task adaptation based on the success of the execution, thus enabling robust performance over time
Leading partner institution: KTH
Work Package 5: Learning from Interaction with a Human
Objectives:
Learning of task constraints as a bootstrapping step prior to learning more complex motor tasks
Learning adaptive stiffness control; this includes learning the dynamics of arm, hand and finger motion that ensure grasp stability, to learning how to adapt this motion when in interaction with the object
Learning of haptic interaction; this task extends the previous task by learning how to adapt the dynamics of arm motion when in physical interaction with another human via an object
Leading partner institution: EPFL
Work Package 6: Plan-based Control
Objectives:
Leading partner institution: Uni Bremen
Work Package 7: System Integration and Benchmarking
Objectives:
Illustration of the successful integration of the research and development in the project with real benchmarking
Assessment of potential operation in real conditions using the various robotic platforms available within the project
Building a distributed multi-level architecture that integrates knowledge and development resulting from other workpackages with a strong link to representation, learning, and robotic representation and control
Leading partner institution: CNRS
Work Package 8: Dissemination and Outreach
Objectives:
Foster participation in the scientific community, among industry stakeholders, and potential user groups
Outlining of future industry-oriented dissemination activities
Assessment of the results achieved for patenting and prototyping and future commercialization
Leading partner institution: Aldebaran
Work Package 9: Project Coordination and Management
Objectives:
Ensures efficient and effective coordination and management of the consortium
Organization and management of multi-partner projects
Ensure quality management and quality control of deliverables and reports
Leading partner institution: Uni Bremen